“…These algorithms are reviewed under the miscellaneous category for their effectiveness in power quality assessment. These includes, hardware and software architecture of expert system [198], rule-based model [199], improved generalized adaptive resonance theory (IGART) [200], recurrence quantification analysis [201], stochastic ordering theory with coded quickest classification [202], variety of supervised NN with online learning capabilities [203], attribute weighted artificial immune evolutionary classifier (AWAIEC) [204], spectral kurtosis to separate hybrid PQ disturbances [205], DT initialized fuzzy C-means clustering system based on ST [206], variational mode decomposition (VMD) [207], real-time calculation of the spectral kurtosis [208], online PQDs detection and classification using DWT, MM and SVD [209], curvelet transform and deep learning [210], rule-based ST and adaboost with decision stump as weak classifier [211], random forests based PQ assessment framework [212], deep learning-based method and stacked auto-encoder, as a deep learning framework [213], ICA with a sparse autoencoder (SAE) for gaining automatically training features [214] and a new class-specific weighted random vector functional link network (CSWRVFLN) [137]. The performance analysis of different AI techniques is listed in Table 6.…”